Technology convergence among different industries is critical in terms of creating high-value by providing newproducts or services. Recently, technology convergence between self-driving technology implemented in trucksand different industries is expected to be the driving force of technological innovation, and the importance of theanalysis of the convergence technologies between self-driving technology implemented in trucks and differentindustries is increasing. In this study, we try to identify the main technology convergence between the truckindustry and different industries and observe the characteristics of the change in convergence technology. Inparticular, this study used the forward citation method to overcome the limitation of the concept of TechnologyCycle Time (TCT) which does not reflect the influence of technology. Then, community detection was conductedon the series of citation networks of patents formed over TCT period used a moving window size by one year.
Next, we calculated the similarity of two consecutive communities over adjacent windows to investigate the overlapof the communities. When we analyzed the most frequently cited self-driving technology patents implemented inthe truck industry and the IPC code that cited those patents in the community, we found that the main technologyconvergence between the truck industry and different industries are the railway power monitoring system, airpurification system of fire industry, systems supporting medical activities. The results of this study will providemeaningful information to companies seeking to establish R&D related to the convergence technology of truckindustry in which self-driving technology is implemented.